5 CONCLUSION AND FURTHER
WORK
In this paper we have discussed the representation of
social activities as a taxonomy of instantial
meanings which have been derived from transcript
analyses. We have highlighted a number of factors
that have formed the basis for this representation and
have indicated their relationship to network based
symbolic knowledge representation. We then
outlined our XML based ‘satellite system’ of storing
data and showed how this system is the basis for
Transcript Based Taxonomies. Finally we showed
how the Taxonomy Descriptor supports a number of
methods for the representation of contestation and
ambiguity which, together with the ability to
represent the sequential development of meaning-
making (see section 4.3 and the brief discussion
below), provides the basis for their measure.
It has been pointed out that, due to the
historically specific nature of participants’ meaning-
making, in addition to what can be described as
subjective interpretation, it is impossible to faithfully
capture intended meanings. Whilst we have accepted
this limitation we have also removed an unnecessary
intermediate layer of abstraction by integrating the
transcript and taxonomy layers using the satellite
system of XML documents. This means that the
taxonomy can take full advantage of the exhaustive
notation, and possibility for simplified machine
processing, offered by the CHAT transcription
standard. In directly mapping either an entry
condition or an outcome to elements in the Root
document they become identified with the instantial
meanings provided by the SLA Descriptor ‘view’
(section 4.3). This instantial meaning is unique and
any Taxonomy Descriptor that uses this mapping
offers a direct and unequivocal comparison with any
other Taxonomy Descriptor that maps the same
point. Furthermore, this mapping carries with it a
sequential order of appearance of elements in the
Root document that affords a dynamic
representation of meaning-making.
The primary task of Transcript Based
Taxonomies is to provide a means for the
comparison of meaning-making and this carries the
concomitant requirement that lexical units should be
associable with their synonyms, antonyms, etc., as
they occur within the transcript. The association of
Transcript Based Taxonomies to separate
participants means that accounting for instantial
synonymy, antonymy, etc., is vital for a valid
comparison to take place; participants may use
different words to describe the same thing, or they
may use a word to directly contest another.
Development of this analysis will increase the
delicacy of our representation.
This work was conducted under the auspices of
the Tracker Project, UK EPSRC grant
(GR/R12176/01).
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